mice.impute.lda(y, ry, x, ...)nFALSE=missing, TRUE=observed)n x p) of complete
covariates.nmis with imputations.y, variability of the imputed data could therefore
be somewhat underestimated.lda() and
predict.lda() to compute posterior probabilities
for each incomplete case, and draws the imputations from
this posterior.mice: Multivariate Imputation by Chained Equations
in R. Journal of Statistical Software,
45(3), 1-67.
Brand, J.P.L. (1999). Development, Implementation and Evaluation of Multiple Imputation Strategies for the Statistical Analysis of Incomplete Data Sets. Ph.D. Thesis, TNO Prevention and Health/Erasmus University Rotterdam. ISBN 90-74479-08-1.
Venables, W.N. & Ripley, B.D. (1997). Modern applied statistics with S-PLUS (2nd ed). Springer, Berlin.
mice, link{mice.impute.polyreg},
lda